JOURNAL ARTICLE

Hypergraph Isomorphism Computation

Yifan FengJiashu HanShihui YingYue Gao

Year: 2024 Journal:   IEEE Transactions on Pattern Analysis and Machine Intelligence Vol: 46 (5)Pages: 3880-3896   Publisher: IEEE Computer Society

Abstract

The isomorphism problem, crucial in network analysis, involves analyzing both low-order and high-order structural information. Graph isomorphism algorithms focus on structural equivalence to simplify solver space, aiding applications like protein design, chemical pathways, and community detection. However, they fall short in capturing complex high-order relationships, unlike hypergraph isomorphism methods. Traditional hypergraph methods face challenges like high memory use and inaccurate identification, leading to poor performance. To overcome these, we introduce a hypergraph Weisfeiler-Lehman (WL) test algorithm, extending the WL test from graphs to hypergraphs, and develop a hypergraph WL kernel framework with two variants: the Hypergraph WL Subtree Kernel and Hypergraph WL Hyperedge Kernel. The Hypergraph WL Subtree Kernel counts different types of rooted subtrees and generates the final feature vector for a given hypergraph by comparing the number of different types of rooted subtrees. The Subtree Kernel identifies different rooted subtrees, while the Hyperedge Kernel focuses on hyperedges' vertex labels, enhancing feature vector generation. In order to fulfill our research objectives, a comprehensive set of experiments was meticulously designed, including seven graph classification datasets and 12 hypergraph classification datasets. Results on graph classification datasets indicate that the Hypergraph WL Subtree Kernel can achieve the same performance compared with the classical Graph Weisfeiler-Lehman Subtree Kernel. Results on hypergraph classification datasets show significant improvements compared to other typical kernel-based methods, which demonstrates the effectiveness of the proposed methods. In our evaluation, our proposed methods outperform the second-best method in terms of runtime, running over 80 times faster when handling complex hypergraph structures. This significant speed advantage highlights the great potential of our methods in real-world applications.

Keywords:
Hypergraph Kernel (algebra) Isomorphism (crystallography) Graph isomorphism Mathematics Vertex (graph theory) Graph kernel Computer science Theoretical computer science Algorithm Graph Kernel method Combinatorics Artificial intelligence Support vector machine Polynomial kernel Line graph

Metrics

13
Cited By
9.48
FWCI (Field Weighted Citation Impact)
49
Refs
0.96
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Computational Drug Discovery Methods
Physical Sciences →  Computer Science →  Computational Theory and Mathematics
Bioinformatics and Genomic Networks
Life Sciences →  Biochemistry, Genetics and Molecular Biology →  Molecular Biology
Advanced Graph Neural Networks
Physical Sciences →  Computer Science →  Artificial Intelligence

Related Documents

BOOK

Hypergraph Computation

Qionghai DaiYue Gao

Artificial intelligence: foundations, theory, and algorithms/Artificial intelligence: Foundations, theory, and algorithms Year: 2023
JOURNAL ARTICLE

Hypergraph Computation

Yue GaoShuyi JiXiangmin HanQionghai Dai

Journal:   Engineering Year: 2024 Vol: 40 Pages: 188-201
JOURNAL ARTICLE

Hypergraph isomorphism using association hypergraphs

Giulia SandiSebastiano VasconMarcello Pelillo

Journal:   Pattern Recognition Letters Year: 2019 Vol: 128 Pages: 393-399
BOOK-CHAPTER

Hypergraph Computation Paradigms

Qionghai DaiYue Gao

Artificial intelligence: foundations, theory, and algorithms/Artificial intelligence: Foundations, theory, and algorithms Year: 2023 Pages: 41-47
© 2026 ScienceGate Book Chapters — All rights reserved.